A machine-learning clustering approach for intrusion detection to IoT devices
Datum
2019Language
en
Schlagwort
Zusammenfassung
Nowadays we see the sharp increase in smart devices on the internet and in the network of things. An ever increasing problem with these devices is their protection against malware and internet attacks because of their heterogeneity. This makes them vulnerable and many of them without even showing signs of malfunction. In this work, we study these devices, the types of attacks that make them vulnerable, and suggest a digital system that embeds a Machine Learning(ML)-based clustering algorithm for detecting suspicious behavior, exploiting current supply characteristic dissipation. The system is prototype and uses the K-Means Clustering Algorithm with Supervised Training. The results of this work showed successful detection of suspicious behavior of smart IoT devices. © 2019 IEEE.